A Parallel Novelty Search Metaheuristic Applied to a Wildfire Prediction System

Jan Strappa, Paola Caymes-Scutari, G. Bianchini
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Abstract

Wildfires are a highly prevalent multi-causal environmental phenomenon. The impact of this phenomenon includes human losses, environmental damage and high economic costs. To mitigate these effects, several computer simulation systems have been developed in order to predict fire behavior based on a set of input parameters, also called a scenario (wind speed and direction; temperature; etc.). However, the results of a simulation usually have a high degree of error due to the uncertainty in the values of some variables, because they are not known, or because their measurement may be imprecise, erroneous, or impossible to perform in real time. Previous works have proposed the combination of multiple results in order to reduce this uncertainty. State-of-the-art methods are based on parallel optimization strategies that use a fitness function to guide the search among all possible scenarios. Although these methods have shown improvements in the quality of predictions, they have some limitations related to the algorithms used for the selection of scenarios. To overcome these limitations, in this work we propose to apply the Novelty Search paradigm, which replaces the objective function by a measure of the novelty of the solutions found, which allows the search to continuously generate solutions with behaviors that differ from one another. This approach avoids local optima and may be able to find useful solutions that would be difficult or impossible to find by other algorithms. As with existing methods, this proposal may also be adapted to other propagation models (floods, avalanches or landslides).
并行新颖性搜索元启发式算法在野火预测系统中的应用
野火是一种非常普遍的多原因环境现象。这一现象的影响包括人员损失、环境破坏和高昂的经济成本。为了减轻这些影响,一些计算机模拟系统已经开发出来,以便根据一组输入参数预测火灾行为,也称为场景(风速和方向;温度;等等)。然而,由于某些变量值的不确定性,因为它们是未知的,或者因为它们的测量可能不精确、错误或不可能实时执行,模拟的结果通常具有高度的误差。以前的工作已经提出了多个结果的组合,以减少这种不确定性。最先进的方法是基于并行优化策略,使用适应度函数在所有可能的场景中指导搜索。尽管这些方法在预测质量方面有所改进,但它们在用于选择场景的算法方面存在一些局限性。为了克服这些限制,在这项工作中,我们建议应用新颖性搜索范式,该范式通过测量所发现的解决方案的新颖性来取代目标函数,这使得搜索能够不断地生成具有彼此不同行为的解决方案。这种方法避免了局部最优,并且可能能够找到其他算法难以或不可能找到的有用解决方案。与现有方法一样,这一建议也可以适用于其他传播模型(洪水、雪崩或山体滑坡)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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